2023
DOI: 10.3390/pr11102988
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Wear Prediction of Tool Based on Modal Decomposition and MCNN-BiLSTM

Zengpeng He,
Yefeng Liu,
Xinfu Pang
et al.

Abstract: Metal cutting is a complex process with strong randomness and nonlinear characteristics in its dynamic behavior, while tool wear or fractures will have an immediate impact on the product surface quality and machining precision. A combined prediction method comprising modal decomposition, multi-channel input, a multi-scale Convolutional neural network (CNN), and a bidirectional long-short term memory network (BiLSTM) is presented to monitor tool condition and to predict tool-wear value in real time. This method… Show more

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Cited by 2 publications
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“…To more comprehensively assess the performance of the model, PR-AUC [36], CGRU-IConvGRU-A [37], ConvLSTM-Att [24], and MDMCNN-BiLSTM [38] were used as benchmarks for comparison. The experimental settings follow those described in the original literature, using MAE and R 2 as performance metrics.…”
Section: Comparative Experimentsmentioning
confidence: 99%
“…To more comprehensively assess the performance of the model, PR-AUC [36], CGRU-IConvGRU-A [37], ConvLSTM-Att [24], and MDMCNN-BiLSTM [38] were used as benchmarks for comparison. The experimental settings follow those described in the original literature, using MAE and R 2 as performance metrics.…”
Section: Comparative Experimentsmentioning
confidence: 99%